P. Mohan, Shrey Srivastava, Garvita Tiwari, R. Kala
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引用次数: 3
摘要
手部提取和手势识别一直是一个具有挑战性的问题。在本文中,我们考虑了一组固定的标准手势和一个合理结构的环境,并开发了三种有效的从图像中提取手的程序,其中两种用于简单的非复杂静态背景,另一种用于复杂静态背景,使其独立于皮肤和背景颜色。第二部分是识别手势并使其缩放和旋转不变。对于手提取,使用的三个基本概念是:1。高斯分布,2。3. k -均值分类;简单的背景减法和连续的帧减法,在完整的图像中找到手掌区域。在手势识别中,我们提取了一些特征,如手的中心区域,没有。手指和手指之间的距离。利用这些特征,手势被分为七种标准手势。
Background and skin colour independent hand region extraction and static gesture recognition
Hand extraction and gesture recognition has always been a challenging problem in its general form. In this paper, we consider a fixed set of standard gestures and a reasonably structured environment and develop three effective procedures for extracting hand from the image, two of which are for plain non-complex static background and one for complex static background making it independent of the skin and background colours. The second part is of recognizing the gesture and making it scale and rotation invariant. For hand extraction, the three basic concepts used are 1. Gaussian distribution, 2. K-Mean classification and 3. Simple background subtraction and consecutive frame subtraction to find the palm region in the complete image. In gesture recognition, we extracted some features like centre of hand region, no. of fingers and the distance between the fingers. Using these features, the gestures are classified into seven standard hand gestures.